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An incremental piecewise linear classifier based on polyhedral conic separation

机译:基于多面圆锥分离的增量式分段线性分类器

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摘要

In this paper, a piecewise linear classifier based on polyhedral conic separation is developed. This classifier builds nonlinear boundaries between classes using polyhedral conic functions. Since the number of polyhedral conic functions separating classes is not known a priori, an incremental approach is proposed to build separating functions. These functions are found by minimizing an error function which is nonsmooth and nonconvex. A special procedure is proposed to generate starting points to minimize the error function and this procedure is based on the incremental approach. The discrete gradient method, which is a derivative-free method for nonsmooth optimization, is applied to minimize the error function starting from those points. The proposed classifier is applied to solve classification problems on 12 publicly available data sets and compared with some mainstream and piecewise linear classifiers.
机译:本文提出了一种基于多面体圆锥分离的分段线性分类器。该分类器使用多面圆锥函数在类之间建立非线性边界。由于先验未知多类圆锥函数分离类的数量,因此提出了一种增量方法来构建分离函数。通过最小化不光滑且不凸的误差函数可以找到这些函数。提出了一种特殊的程序来生成起点以最小化误差函数,并且该程序基于增量方法。离散梯度方法是一种用于非平滑优化的无导数方法,可用于最小化从这些点开始的误差函数。提出的分类器用于解决12个公开数据集上的分类问题,并与一些主流和分段线性分类器进行比较。

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